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DATA MINING LECTURE 10 Classification Basic Concepts Decision Trees Evaluation Nearest-Neighbor Classifier.

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Presentation on theme: "DATA MINING LECTURE 10 Classification Basic Concepts Decision Trees Evaluation Nearest-Neighbor Classifier."— Presentation transcript:

1 DATA MINING LECTURE 10 Classification Basic Concepts Decision Trees Evaluation Nearest-Neighbor Classifier

2 Catching tax-evasion Tax-return data for year 2011 A new tax return for 2012 Is this a cheating tax return? An instance of the classification problem: learn a method for discriminating between records of different classes (cheaters vs non-cheaters)

3 What is classification? Classification is the task of learning a target function f that maps attribute set x to one of the predefined class labels y categorical continuous class One of the attributes is the class attribute In this case: Cheat Two class labels (or classes): Yes (1), No (0)

4 Why classification? The target function f is known as a classification model Descriptive modeling: Explanatory tool to distinguish between objects of different classes (e.g., understand why people cheat on their taxes) Predictive modeling: Predict a class of a previously unseen record

5 Examples of Classification Tasks Predicting tumor cells as benign or malignant Classifying credit card transactions as legitimate or fraudulent Categorizing news stories as finance, weather, entertainment, sports, etc Identifying spam email, spam web pages, adult content Understanding if a web query has commercial intent or not

6 General approach to classification Training set consists of records with known class labels Training set is used to build a classification model A labeled test set of previously unseen data records is used to evaluate the quality of the model. The classification model is applied to new records with unknown class labels

7 Illustrating Classification Task

8 Evaluation of classification models Counts of test records that are correctly (or incorrectly) predicted by the classification model Confusion matrix Class = 1Class = 0 Class = 1f 11 f 10 Class = 0f 01 f 00 Predicted Class Actual Class

9 Classification Techniques Decision Tree based Methods Rule-based Methods Memory based reasoning Neural Networks Naïve Bayes and Bayesian Belief Networks Support Vector Machines

10 Classification Techniques Decision Tree based Methods Rule-based Methods Memory based reasoning Neural Networks Naïve Bayes and Bayesian Belief Networks Support Vector Machines

11 Decision Trees Decision tree A flow-chart-like tree structure Internal node denotes a test on an attribute Branch represents an outcome of the test Leaf nodes represent class labels or class distribution

12 Example of a Decision Tree categorical continuous class Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Splitting Attributes Training Data Model: Decision Tree Test outcome Class labels

13 Another Example of Decision Tree categorical continuous class MarSt Refund TaxInc YES NO Yes No Married Single, Divorced < 80K> 80K There could be more than one tree that fits the same data!

14 Decision Tree Classification Task Decision Tree

15 Apply Model to Test Data Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Test Data Start from the root of tree.

16 Apply Model to Test Data Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Test Data

17 Apply Model to Test Data Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Test Data

18 Apply Model to Test Data Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Test Data

19 Apply Model to Test Data Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Test Data

20 Apply Model to Test Data Refund MarSt TaxInc YES NO YesNo Married Single, Divorced < 80K> 80K Test Data Assign Cheat to “No”

21 Decision Tree Classification Task Decision Tree

22 Tree Induction Finding the best decision tree is NP-hard Greedy strategy. Split the records based on an attribute test that optimizes certain criterion. Many Algorithms: Hunt’s Algorithm (one of the earliest) CART ID3, C4.5 SLIQ,SPRINT

23 General Structure of Hunt’s Algorithm ?

24 Hunt’s Algorithm Don’t Cheat Refund Don’t Cheat Don’t Cheat YesNo Refund Don’t Cheat YesNo Marital Status Don’t Cheat Single, Divorced Married Taxable Income Don’t Cheat < 80K>= 80K Refund Don’t Cheat YesNo Marital Status Don’t Cheat Single, Divorced Married

25 Constructing decision-trees (pseudocode) GenDecTree(Sample S, Features F) 1. If stopping_condition(S,F) = true then a. leaf = createNode() b. leaf.label= Classify(S) c. return leaf 2. root = createNode() 3. root.test_condition = findBestSplit(S,F) 4. V = {v| v a possible outcome of root.test_condition} 5. for each value vєV: a. S v : = {s | root.test_condition(s) = v and s є S}; b. child = GenDecTree(S v,F) ; c. Add child as a descent of root and label the edge (root  child) as v 6. return root

26 Tree Induction Issues How to Classify a leaf node Assign the majority class If leaf is empty, assign the default class – the class that has the highest popularity. Determine how to split the records How to specify the attribute test condition? How to determine the best split? Determine when to stop splitting

27 How to Specify Test Condition? Depends on attribute types Nominal Ordinal Continuous Depends on number of ways to split 2-way split Multi-way split

28 Splitting Based on Nominal Attributes Multi-way split: Use as many partitions as distinct values. Binary split: Divides values into two subsets. Need to find optimal partitioning. CarType Family Sports Luxury CarType {Family, Luxury} {Sports} CarType {Sports, Luxury} {Family} OR

29 Multi-way split: Use as many partitions as distinct values. Binary split: Divides values into two subsets – respects the order. Need to find optimal partitioning. What about this split? Splitting Based on Ordinal Attributes Size Small Medium Large Size {Medium, Large} {Small} Size {Small, Medium} {Large} OR Size {Small, Large} {Medium}

30 Splitting Based on Continuous Attributes Different ways of handling Discretization to form an ordinal categorical attribute Static – discretize once at the beginning Dynamic – ranges can be found by equal interval bucketing, equal frequency bucketing (percentiles), or clustering. Binary Decision: (A < v) or (A  v) consider all possible splits and finds the best cut can be more compute intensive

31 Splitting Based on Continuous Attributes

32 How to determine the Best Split Before Splitting: 10 records of class 0, 10 records of class 1 Which test condition is the best?

33 How to determine the Best Split Greedy approach: Creation of nodes with homogeneous class distribution is preferred Need a measure of node impurity: Ideas? Non-homogeneous, High degree of impurity Homogeneous, Low degree of impurity

34 Measuring Node Impurity p(i|t): fraction of records associated with node t belonging to class i Used in ID3 and C4.5 Used in CART, SLIQ, SPRINT.

35 Gain Gain of an attribute split: compare the impurity of the parent node with the average impurity of the child nodes Maximizing the gain  Minimizing the weighted average impurity measure of children nodes If I() = Entropy(), then Δ info is called information gain

36 Example P(C1) = 0/6 = 0 P(C2) = 6/6 = 1 Gini = 1 – P(C1) 2 – P(C2) 2 = 1 – 0 – 1 = 0 Entropy = – 0 log 0 – 1 log 1 = – 0 – 0 = 0 Error = 1 – max (0, 1) = 1 – 1 = 0 P(C1) = 1/6 P(C2) = 5/6 Gini = 1 – (1/6) 2 – (5/6) 2 = 0.278 Entropy = – (1/6) log 2 (1/6) – (5/6) log 2 (1/6) = 0.65 Error = 1 – max (1/6, 5/6) = 1 – 5/6 = 1/6 P(C1) = 2/6 P(C2) = 4/6 Gini = 1 – (2/6) 2 – (4/6) 2 = 0.444 Entropy = – (2/6) log 2 (2/6) – (4/6) log 2 (4/6) = 0.92 Error = 1 – max (2/6, 4/6) = 1 – 4/6 = 1/3

37 Impurity measures All of the impurity measures take value zero (minimum) for the case of a pure node where a single value has probability 1 All of the impurity measures take maximum value when the class distribution in a node is uniform.

38 Comparison among Splitting Criteria For a 2-class problem: The different impurity measures are consistent

39 Categorical Attributes For binary values split in two For multivalued attributes, for each distinct value, gather counts for each class in the dataset Use the count matrix to make decisions Multi-way splitTwo-way split (find best partition of values)

40 Continuous Attributes Use Binary Decisions based on one value Choices for the splitting value Number of possible splitting values = Number of distinct values Each splitting value has a count matrix associated with it Class counts in each of the partitions, A < v and A  v Exhaustive method to choose best v For each v, scan the database to gather count matrix and compute the impurity index Computationally Inefficient! Repetition of work.

41 Continuous Attributes For efficient computation: for each attribute, Sort the attribute on values Linearly scan these values, each time updating the count matrix and computing impurity Choose the split position that has the least impurity Split Positions Sorted Values

42 Splitting based on impurity Impurity measures favor attributes with large number of values A test condition with large number of outcomes may not be desirable # of records in each partition is too small to make predictions

43 Splitting based on INFO

44 Gain Ratio Splitting using information gain Parent Node, p is split into k partitions n i is the number of records in partition i Adjusts Information Gain by the entropy of the partitioning (SplitINFO). Higher entropy partitioning (large number of small partitions) is penalized! Used in C4.5 Designed to overcome the disadvantage of impurity

45 Stopping Criteria for Tree Induction Stop expanding a node when all the records belong to the same class Stop expanding a node when all the records have similar attribute values Early termination (to be discussed later)

46 Decision Tree Based Classification Advantages: Inexpensive to construct Extremely fast at classifying unknown records Easy to interpret for small-sized trees Accuracy is comparable to other classification techniques for many simple data sets

47 Example: C4.5 Simple depth-first construction. Uses Information Gain Sorts Continuous Attributes at each node. Needs entire data to fit in memory. Unsuitable for Large Datasets. Needs out-of-core sorting. You can download the software from: http://www.cse.unsw.edu.au/~quinlan/c4.5r8.tar.gz http://www.cse.unsw.edu.au/~quinlan/c4.5r8.tar.gz

48 Other Issues Data Fragmentation Expressiveness

49 Data Fragmentation Number of instances gets smaller as you traverse down the tree Number of instances at the leaf nodes could be too small to make any statistically significant decision You can introduce a lower bound on the number of items per leaf node in the stopping criterion.

50 Expressiveness A classifier defines a function that discriminates between two (or more) classes. The expressiveness of a classifier is the class of functions that it can model, and the kind of data that it can separate When we have discrete (or binary) values, we are interested in the class of boolean functions that can be modeled If the data-points are real vectors we talk about the decision boundary that the classifier can model

51 Decision Boundary Border line between two neighboring regions of different classes is known as decision boundary Decision boundary is parallel to axes because test condition involves a single attribute at-a-time

52 Expressiveness Decision tree provides expressive representation for learning discrete-valued function But they do not generalize well to certain types of Boolean functions Example: parity function: Class = 1 if there is an even number of Boolean attributes with truth value = True Class = 0 if there is an odd number of Boolean attributes with truth value = True For accurate modeling, must have a complete tree Less expressive for modeling continuous variables Particularly when test condition involves only a single attribute at-a-time

53 Oblique Decision Trees x + y < 1 Class = + Class = Test condition may involve multiple attributes More expressive representation Finding optimal test condition is computationally expensive

54 Practical Issues of Classification Underfitting and Overfitting Evaluation

55 Underfitting and Overfitting (Example) 500 circular and 500 triangular data points. Circular points: 0.5  sqrt(x 1 2 +x 2 2 )  1 Triangular points: sqrt(x 1 2 +x 2 2 ) > 0.5 or sqrt(x 1 2 +x 2 2 ) < 1

56 Underfitting and Overfitting Overfitting Underfitting: when model is too simple, both training and test errors are large Underfitting Overfitting: when model is too complex it models the details of the training set and fails on the test set

57 Overfitting due to Noise Decision boundary is distorted by noise point

58 Overfitting due to Insufficient Examples Lack of data points in the lower half of the diagram makes it difficult to predict correctly the class labels of that region - Insufficient number of training records in the region causes the decision tree to predict the test examples using other training records that are irrelevant to the classification task

59 Notes on Overfitting Overfitting results in decision trees that are more complex than necessary Training error no longer provides a good estimate of how well the tree will perform on previously unseen records The model does not generalize well Need new ways for estimating errors

60 Estimating Generalization Errors

61 Occam’s Razor Given two models of similar generalization errors, one should prefer the simpler model over the more complex model For complex models, there is a greater chance that it was fitted accidentally by errors in data Therefore, one should include model complexity when evaluating a model

62 Minimum Description Length (MDL) Cost(Model,Data) = Cost(Data|Model) + Cost(Model) Search for the least costly model. Cost(Data|Model) encodes the misclassification errors. Cost(Model) encodes the decision tree node encoding (number of children) plus splitting condition encoding.

63 How to Address Overfitting Pre-Pruning (Early Stopping Rule) Stop the algorithm before it becomes a fully-grown tree Typical stopping conditions for a node: Stop if all instances belong to the same class Stop if all the attribute values are the same More restrictive conditions: Stop if number of instances is less than some user-specified threshold Stop if class distribution of instances are independent of the available features (e.g., using  2 test) Stop if expanding the current node does not improve impurity measures (e.g., Gini or information gain).

64 How to Address Overfitting… Post-pruning Grow decision tree to its entirety Trim the nodes of the decision tree in a bottom-up fashion If generalization error improves after trimming, replace sub-tree by a leaf node. Class label of leaf node is determined from majority class of instances in the sub-tree Can use MDL for post-pruning

65 Example of Post-Pruning Class = Yes20 Class = No10 Error = 10/30 Training Error (Before splitting) = 10/30 Pessimistic error = (10 + 0.5)/30 = 10.5/30 Training Error (After splitting) = 9/30 Pessimistic error (After splitting) = (9 + 4  0.5)/30 = 11/30 PRUNE! Class = Yes8 Class = No4 Class = Yes3 Class = No4 Class = Yes4 Class = No1 Class = Yes5 Class = No1

66 Model Evaluation Metrics for Performance Evaluation How to evaluate the performance of a model? Methods for Performance Evaluation How to obtain reliable estimates? Methods for Model Comparison How to compare the relative performance among competing models?

67 Model Evaluation Metrics for Performance Evaluation How to evaluate the performance of a model? Methods for Performance Evaluation How to obtain reliable estimates? Methods for Model Comparison How to compare the relative performance among competing models?

68 Metrics for Performance Evaluation Focus on the predictive capability of a model Rather than how fast it takes to classify or build models, scalability, etc. Confusion Matrix: PREDICTED CLASS ACTUAL CLASS Class=YesClass=No Class=Yesab Class=Nocd a: TP (true positive) b: FN (false negative) c: FP (false positive) d: TN (true negative)

69 Metrics for Performance Evaluation… Most widely-used metric: PREDICTED CLASS ACTUAL CLASS Class=YesClass=No Class=Yesa (TP) b (FN) Class=Noc (FP) d (TN)

70 Limitation of Accuracy Consider a 2-class problem Number of Class 0 examples = 9990 Number of Class 1 examples = 10 If model predicts everything to be class 0, accuracy is 9990/10000 = 99.9 % Accuracy is misleading because model does not detect any class 1 example

71 Cost Matrix PREDICTED CLASS ACTUAL CLASS C(i|j) Class=YesClass=No Class=YesC(Yes|Yes)C(No|Yes) Class=NoC(Yes|No)C(No|No) C(i|j): Cost of classifying class j example as class i

72 Computing Cost of Classification Cost Matrix PREDICTED CLASS ACTUAL CLASS C(i|j) +- +100 -10 Model M 1 PREDICTED CLASS ACTUAL CLASS +- +15040 -60250 Model M 2 PREDICTED CLASS ACTUAL CLASS +- +25045 -5200 Accuracy = 80% Cost = 3910 Accuracy = 90% Cost = 4255

73 Cost vs Accuracy Count PREDICTED CLASS ACTUAL CLASS Class=YesClass=No Class=Yes ab Class=No cd Cost PREDICTED CLASS ACTUAL CLASS Class=YesClass=No Class=Yes pq Class=No qp N = a + b + c + d Accuracy = (a + d)/N Cost = p (a + d) + q (b + c) = p (a + d) + q (N – a – d) = q N – (q – p)(a + d) = N [q – (q-p)  Accuracy] Accuracy is proportional to cost if 1. C(Yes|No)=C(No|Yes) = q 2. C(Yes|Yes)=C(No|No) = p

74 Precision-Recall l Precision is biased towards C(Yes|Yes) & C(Yes|No) l Recall is biased towards C(Yes|Yes) & C(No|Yes) l F-measure is biased towards all except C(No|No) Count PREDICTED CLASS ACTUAL CLASS Class=YesClass=No Class=Yes ab Class=No cd

75 Precision-Recall plot Usually for parameterized models, it controls the precision/recall tradeoff

76 Model Evaluation Metrics for Performance Evaluation How to evaluate the performance of a model? Methods for Performance Evaluation How to obtain reliable estimates? Methods for Model Comparison How to compare the relative performance among competing models?

77 Methods for Performance Evaluation How to obtain a reliable estimate of performance? Performance of a model may depend on other factors besides the learning algorithm: Class distribution Cost of misclassification Size of training and test sets

78 Methods of Estimation Holdout Reserve 2/3 for training and 1/3 for testing Random subsampling One sample may be biased -- Repeated holdout Cross validation Partition data into k disjoint subsets k-fold: train on k-1 partitions, test on the remaining one Leave-one-out: k=n Guarantees that each record is used the same number of times for training and testing Bootstrap Sampling with replacement ~63% of records used for training, ~27% for testing

79 Dealing with class Imbalance If the class we are interested in is very rare, then the classifier will ignore it. The class imbalance problem Solution We can modify the optimization criterion by using a cost sensitive metric We can balance the class distribution Sample from the larger class so that the size of the two classes is the same Replicate the data of the class of interest so that the classes are balanced Over-fitting issues

80 Learning Curve l Learning curve shows how accuracy changes with varying sample size l Requires a sampling schedule for creating learning curve Effect of small sample size: - Bias in the estimate - Variance of estimate

81 Model Evaluation Metrics for Performance Evaluation How to evaluate the performance of a model? Methods for Performance Evaluation How to obtain reliable estimates? Methods for Model Comparison How to compare the relative performance among competing models?

82 ROC (Receiver Operating Characteristic) Developed in 1950s for signal detection theory to analyze noisy signals Characterize the trade-off between positive hits and false alarms ROC curve plots TPR (on the y-axis) against FPR (on the x-axis) PREDICTED CLASS Actual YesNo Yesa (TP) b (FN) Noc (FP) d (TN) Fraction of positive instances predicted correctly Fraction of negative instances predicted incorrectly

83 ROC (Receiver Operating Characteristic) Performance of a classifier represented as a point on the ROC curve Changing some parameter of the algorithm, sample distribution or cost matrix changes the location of the point

84 ROC Curve At threshold t: TP=0.5, FN=0.5, FP=0.12, FN=0.88 - 1-dimensional data set containing 2 classes (positive and negative) - any points located at x > t is classified as positive

85 ROC Curve (TP,FP): (0,0): declare everything to be negative class (1,1): declare everything to be positive class (1,0): ideal Diagonal line: Random guessing Below diagonal line: prediction is opposite of the true class PREDICTED CLASS Actual YesNo Yesa (TP) b (FN) Noc (FP) d (TN)

86 Using ROC for Model Comparison l No model consistently outperform the other l M 1 is better for small FPR l M 2 is better for large FPR l Area Under the ROC curve (AUC) l Ideal: Area = 1 l Random guess:  Area = 0.5

87 ROC curve vs Precision-Recall curve Area Under the Curve (AUC) as a single number for evaluation

88 NEAREST NEIGHBOR CLASSIFICATION

89 Illustrating Classification Task

90 Instance-Based Classifiers Store the training records Use training records to predict the class label of unseen cases

91 Instance Based Classifiers Examples: Rote-learner Memorizes entire training data and performs classification only if attributes of record match one of the training examples exactly Nearest neighbor classifier Uses k “closest” points (nearest neighbors) for performing classification

92 Nearest Neighbor Classifiers Basic idea: “If it walks like a duck, quacks like a duck, then it’s probably a duck” Training Records Test Record Compute Distance Choose k of the “nearest” records

93 Nearest-Neighbor Classifiers l Requires three things –The set of stored records –Distance Metric to compute distance between records –The value of k, the number of nearest neighbors to retrieve l To classify an unknown record: 1.Compute distance to other training records 2.Identify k nearest neighbors 3.Use class labels of nearest neighbors to determine the class label of unknown record (e.g., by taking majority vote)

94 Definition of Nearest Neighbor K-nearest neighbors of a record x are data points that have the k smallest distance to x

95 1 nearest-neighbor Voronoi Diagram defines the classification boundary The area takes the class of the green point

96 Nearest Neighbor Classification Compute distance between two points: Euclidean distance Determine the class from nearest neighbor list take the majority vote of class labels among the k- nearest neighbors Weigh the vote according to distance weight factor, w = 1/d 2

97 Nearest Neighbor Classification… Choosing the value of k: If k is too small, sensitive to noise points If k is too large, neighborhood may include points from other classes

98 Nearest Neighbor Classification… Scaling issues Attributes may have to be scaled to prevent distance measures from being dominated by one of the attributes Example: height of a person may vary from 1.5m to 1.8m weight of a person may vary from 90lb to 300lb income of a person may vary from $10K to $1M

99 Nearest Neighbor Classification… Problem with Euclidean measure: High dimensional data curse of dimensionality Can produce counter-intuitive results 1 1 1 1 1 1 1 1 1 1 1 0 0 1 1 1 1 1 1 1 1 1 1 1 1 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 1 vs d = 1.4142  Solution: Normalize the vectors to unit length

100 Nearest neighbor Classification… k-NN classifiers are lazy learners It does not build models explicitly Unlike eager learners such as decision trees Classifying unknown records are relatively expensive Naïve algorithm: O(n) Need for structures to retrieve nearest neighbors fast. The Nearest Neighbor Search problem.

101 Nearest Neighbor Search Two-dimensional kd-trees A data structure for answering nearest neighbor queries in R 2 kd-tree construction algorithm Select the x or y dimension (alternating between the two) Partition the space into two with a line passing from the median point Repeat recursively in the two partitions as long as there are enough points

102 2-dimensional kd-trees Nearest Neighbor Search

103 2-dimensional kd-trees Nearest Neighbor Search

104 2-dimensional kd-trees Nearest Neighbor Search

105 2-dimensional kd-trees Nearest Neighbor Search

106 2-dimensional kd-trees Nearest Neighbor Search

107 2-dimensional kd-trees Nearest Neighbor Search

108 region(u) – all the black points in the subtree of u 2-dimensional kd-trees Nearest Neighbor Search

109  A binary tree:  Size O(n)  Depth O(logn)  Construction time O(nlogn)  Query time: worst case O(n), but for many cases O(logn) Generalizes to d dimensions  Example of Binary Space Partitioning 2-dimensional kd-trees Nearest Neighbor Search


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